The group testing problem consists of determining a small set of defective items from a larger set of items based on a number of possibly-noisy tests, and is relevant in applications such as medical testing, communication protocols, pattern matching, and more. We study the noisy version of this problem, where the outcome of each standard noiseless group test is subject to independent noise, corresponding to passing the noiseless result through a binary channel. We introduce a class of algorithms that we refer to as Near-Definite Defectives (NDD), and study bounds on the required number of tests for asymptotically vanishing error probability under Bernoulli random test designs. In addition, we study algorithm-independent converse results, giving lower bounds on the required number of tests under Bernoulli test designs. Under reverse Z-channel noise, the achievable rates and converse results match in a broad range of sparsity regimes, and under Z-channel noise, the two match in a narrower range of dense/low-noise regimes. We observe that although these two channels have the same Shannon capacity when viewed as a communication channel, they can behave quite differently when it comes to group testing. Finally, we extend our analysis of these noise models to a general binary noise model (including symmetric noise), and show improvements over known existing bounds in broad scaling regimes.
翻译:组测试问题包括根据一系列可能无效的测试,从一系列更大的物品中确定一小组有缺陷的物品,这些物品基于一系列可能无效的测试,并且与诸如医学测试、通信协议、模式匹配等应用有关。我们研究这个问题的噪音版本,每个标准的无噪音群体测试的结果都受到独立噪音的影响,相应的是通过二进制通道传递无噪音的结果。我们引入了一类算法,我们称之为“近无线缺陷者”(NDD),并研究Bernoulli随机测试设计下无线消失误差概率所需的测试数量。此外,我们研究依赖算法的对等结果,在Bernoul测试设计下对所需试验次数给予较低的限制。在逆向的Z-声道噪音下,可实现的速率和反向结果匹配,在Z-频道噪音下,两种比较窄范围的密度/低音频系统系统(NDD),我们观察到,这两个频道在被视为宽度通信频道时具有相同的香农气模型,它们作为宽度的模型,最终显示我们已知的噪声学改进幅度。